We consider a mechanistic non-linear machine learning approach to learning signals in financial time series data. A modularised and decoupled algorithm framework is established and is proven on daily sampled closing time-series data for JSE equity markets. The input patterns are based on input data vectors of data windows preprocessed into a sequence of daily, weekly and monthly or quarterly sampled feature measurement changes (log feature fluctuations). The data processing is split into a batch processed step where features are learnt using a Stacked AutoEncoder (SAE) via unsupervised learning, and then both batch and online supervised learning are carried out on Feedforward Neural Networks (FNNs) using these features. The FNN output is a ...
Deep learning has shown great promise in solving complicated problems in recent years. One applicabl...
A major issue in financial market trading is knowing when to undertake a transaction for the purpose...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...
In the last decade, market financial forecasting has attracted high interests amongst the researcher...
Traditional approaches to predicting financial market dynamics tend to be linear and stationary, whe...
In this paper, we show that neural networks can be used to uncover the non-linearity that exists in ...
This multidisciplinary thesis investigates the application of machine learning to financial time ser...
Neural networks demonstrate great potential for discovering non-linear relationships in time-series ...
The stock market plays a fundamental role in any country's economy as it efficiently directs the flo...
In this thesis, I study high-dimensional nonlinear time series analysis, and its applications in fin...
This article conducts a systematic comparison of three methods for predicting the direction (+/-) of...
Financial time series prediction, whether for classification or regression, has been a heated resear...
Machine learning, as a subtopic of artificial intelligence, has powerfully been applied in multiple ...
This thesis presents a collection of practical techniques for analysing various market properties in...
With the rapid development in Artificial Intelligence and the rise in financial literacy among peopl...
Deep learning has shown great promise in solving complicated problems in recent years. One applicabl...
A major issue in financial market trading is knowing when to undertake a transaction for the purpose...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...
In the last decade, market financial forecasting has attracted high interests amongst the researcher...
Traditional approaches to predicting financial market dynamics tend to be linear and stationary, whe...
In this paper, we show that neural networks can be used to uncover the non-linearity that exists in ...
This multidisciplinary thesis investigates the application of machine learning to financial time ser...
Neural networks demonstrate great potential for discovering non-linear relationships in time-series ...
The stock market plays a fundamental role in any country's economy as it efficiently directs the flo...
In this thesis, I study high-dimensional nonlinear time series analysis, and its applications in fin...
This article conducts a systematic comparison of three methods for predicting the direction (+/-) of...
Financial time series prediction, whether for classification or regression, has been a heated resear...
Machine learning, as a subtopic of artificial intelligence, has powerfully been applied in multiple ...
This thesis presents a collection of practical techniques for analysing various market properties in...
With the rapid development in Artificial Intelligence and the rise in financial literacy among peopl...
Deep learning has shown great promise in solving complicated problems in recent years. One applicabl...
A major issue in financial market trading is knowing when to undertake a transaction for the purpose...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...